TECHNICAL FIELD
[0001] The present invention relates to an SOC estimation device of an energy storage device
capable of charge-discharge, an energy storage apparatus, and an SOC estimation method
for an energy storage device.
BACKGROUND ART
[0002] Conventionally, there are known various methods for estimating SOC in an energy storage
device capable of charge-discharge. Patent Document 1 describes a point of estimating
SOC by utilizing a correlation between SOC and OCV. Note that SOC is a state of charge
and OCV is an open circuit voltage.
[0003] Patent Document 2 describes a point that there are a first deterioration state in
which deterioration is gentle and a second deterioration state in which deterioration
is sharp, for an energy storage device. Then, prolonging of battery life is achieved
by limiting an upper limit voltage for charge, in accordance with the deterioration
state. Note that, in Patent Document 2, the degradation state is determined by comparing
a second capacity change quantity with a threshold value.
PRIOR ART DOCUMENTS
PATENT DOCUMENTS
SUMMARY OF THE INVENTION
PROBLEMS TO BE SOLVED BY THE INVENTION
[0005] Energy storage devices such as lithium ion batteries have become widespread in automotive
use. In the future, a situation is assumed in which an energy storage device after
being used in automobile use (first use) is removed from the automobile and used for
another purpose (second use). Therefore, even in the second use, a technique for accurately
estimating SOC of the energy storage device is required. Further, even in a case of
being used for the same purpose of use, it is preferable to accurately estimate SOC
of the energy storage device regardless of a use period or a use situation.
[0006] The present invention has been made on the basis of the above circumstances, and
it is an object of the present invention to improve estimation accuracy of SOC.
MEANS FOR SOLVING THE PROBLEMS
[0007] An SOC estimation device of an energy storage device disclosed in this specification
includes a storage unit and a data processing unit. The energy storage device has
a characteristic including a first deterioration mode in which a capacity drop with
respect to time indicates a first transition, and a second deterioration mode in which
a capacity drop indicates a second transition. The storage unit holds first correlation
data indicating a correlation between SOC and OCV of the energy storage device in
the first deterioration mode, and second correlation data indicating a correlation
between SOC and OCV of the energy storage device in the second deterioration mode.
The data processing unit executes a mode determination process of determining a deterioration
mode of the energy storage device, and an estimation process of selecting correlation
data corresponding to the deterioration mode from the storage unit, to estimate SOC
of the energy storage device.
[0008] Meanwhile, the technique disclosed in this specification can be applied to an energy
storage apparatus and an SOC estimation method.
ADVANTAGES OF THE INVENTION
[0009] According to the SOC estimation device disclosed in this specification, estimation
accuracy of SOC can be improved.
BRIEF DESCRIPTION OF THE DRAWINGS
[0010]
Fig. 1 is a block diagram showing an electrical configuration of a battery pack according
to a first embodiment.
Fig. 2 is a perspective view of a lithium ion secondary battery.
Fig. 3 is an exploded perspective view of the lithium ion secondary battery.
Fig. 4 is a view for explaining an electrode assembly of the lithium ion secondary
battery.
Fig. 5 is a graph showing a change in an available capacity with respect to a standing
period.
Fig. 6 is a graph showing a change in CCV with respect to a discharge time.
Fig. 7 is a graph showing changes in CCV and CCP with respect to a discharge time.
Fig. 8 is a graph showing changes in CCV and CCP with respect to a discharge time.
Fig. 9 is a graph showing a change in CCV with respect to DOD.
Fig. 10 is a graph showing a change in OCV with respect to SOC.
Fig. 11 is a view showing storage contents of a memory.
Fig. 12 is a graph showing a change in a resistance increase rate with respect to
a standing period.
Fig. 13 is a diagram showing a detection principle of an internal resistance of a
secondary battery.
Fig. 14 is a flowchart showing a flow of a switching process of a correlation map.
Fig. 15 is a flowchart of an SOC calculation process by an OCV method.
Fig. 16 is a view showing a correlation map between OCV and SOC.
Fig. 17 is a graph showing changes in CCV and CCP with respect to a discharge time
for a lithium ion secondary battery according to a second embodiment.
Fig. 18 is a graph showing a change in CCV with respect to DOD.
Fig. 19 is a graph showing a change in a voltage with respect to a current of the
lithium secondary battery.
MODE FOR CARRYING OUT THE INVENTION
[0011] First, an outline of an SOC estimation device disclosed in this embodiment will be
described.
[0012] The SOC estimation device of an energy storage device includes a storage unit and
a data processing unit. The energy storage device has a characteristic including a
first deterioration mode in which a capacity drop with respect to time indicates a
first transition, and a second deterioration mode in which a capacity drop indicates
a second transition. The storage unit holds first correlation data indicating a correlation
between SOC and OCV of the energy storage device in the first deterioration mode,
and second correlation data indicating a correlation between SOC and OCV of the energy
storage device in the second deterioration mode. The data processing unit executes
a mode determination process of determining a deterioration mode of the energy storage
device, and an estimation process of selecting correlation data corresponding to the
deterioration mode from the storage unit, to estimate SOC of the energy storage device.
In this configuration, correlation data corresponding to the deterioration mode is
selected from a plurality of correlation data indicating the correlation between SOC
and OCV stored in the storage unit, and SOC of the energy storage device is estimated.
Therefore, the estimation accuracy of SOC can be improved.
[0013] The data processing unit may determine a deterioration mode of the energy storage
device on the basis of an internal resistance of the energy storage device in the
mode determination process. Since the internal resistance of the energy storage device
can be calculated from a voltage and a current of the energy storage device, it is
possible to determine the deterioration mode without using a special sensor.
[0014] In the mode determination process, the data processing unit may determine a deterioration
mode of the energy storage device on the basis of a resistance increase rate of the
internal resistance of the energy storage device when SOC is lower than a first threshold,
and on the basis of a resistance increase rate of the internal resistance of the energy
storage device when SOC is higher than a second threshold larger than the first threshold.
In the second deterioration mode, the resistance increase rate of the energy storage
device is particularly large when SOC is low as compared with that when SOC is high.
Therefore, by examining the resistance increase rate of the energy storage device
for both the case where SOC is high and the case where SOC is low, it is possible
to determine the deterioration mode with high accuracy.
[0015] The second deterioration mode is a deterioration mode in which a capacity drop is
larger than that in the first deterioration mode, and the correlation of SOC-OCV is
different in accordance with a capacity retention ratio. The storage unit may hold
correlation data indicating the correlation between SOC and OCV of the energy storage
device for each capacity retention ratio of the energy storage device, for the second
deterioration mode. Further, when the energy storage device is determined to be in
the second deterioration mode, the data processing unit may select correlation data
corresponding to the capacity retention, ratio to estimate SOC of the energy storage
device. In this configuration, when it is determined to be the second deterioration
mode, the correlation data corresponding to the capacity retention ratio is selected
and SOC of the energy storage device is estimated. Therefore, it is possible to further
improve the SOC estimation accuracy of the energy storage device in the second deterioration
mode.
[0016] The data processing unit may calculate an internal resistance of the energy storage
device on the basis of a measured value of a voltage and a current of the energy storage
device. In this configuration, the internal resistance can be calculated from data
of the current and the voltage that can be obtained relatively easily. In addition,
the internal resistance can be calculated even during charge-discharge of the energy
storage device.
[0017] The storage unit preferably holds the first correlation data and the second correlation
data by a correlation map or an approximate expression indicating the correlation
between SOC and OCV of the energy storage device. In this configuration, it is possible
to obtain the first correlation data and the second correlation data by referring
to the correlation map or the approximate expression.
<First Embodiment>
[0018] A first embodiment of the present invention will be described with reference to Figs.
1 to 16.
1. Electrical configuration of battery pack 20 and configuration of secondary battery
100
[0019] Fig. 1 is a circuit diagram showing an electrical configuration of a battery pack
20. The battery pack 20 can be connected with a load 10A and a charger 10B via a positive
electrode terminal 20P and a negative electrode terminal 20N that are external terminals.
Note that the battery pack 20 is an example of the "energy storage apparatus" of the
present invention.
[0020] The battery pack 20 is for a vehicle (e.g., for engine starting), and has an assembled
battery 30, a current sensor 41, a temperature sensor 43, and a management device
50 that manages the assembled battery 30. The current sensor 41 is connected in series
with the assembled battery 30 via a current flow path 35. In this example, the current
sensor 41 is disposed on the negative electrode side.
[0021] The battery pack 20 may be for driving of an electric vehicle such as an electric
vehicle (EV), a hybrid electric vehicle (HEV), a plug-in hybrid electric vehicle (PHEV),
or the like.
[0022] The battery pack 20 may be a 48 V power supply that supplies power to a vehicle driving
assistance and an auxiliary machine.
[0023] The assembled battery 30 is constituted of a plurality (four cells in this example)
of lithium ion secondary batteries 100 in series connection. Note that the cell means
one lithium ion secondary battery. Further, the lithium ion secondary battery 100
is an example of the "energy storage device" of the present invention, and the management
device 50 is an example of the "SOC estimation device" of the present invention. The
assembled battery 30 may be one in which a plurality of cells are connected in series
and in parallel.
[0024] The current sensor 41 functions to detect a current flowing in the lithium ion secondary
battery 100. The temperature sensor 43 is a contact type or a non-contact type, and
functions to measure a temperature [°C] of the lithium ion secondary battery 100.
The temperature sensor 43 may measure a temperature in the vicinity of the assembled
battery 30, or may measure a temperature of one specific cell or each of a plurality
of cells.
[0025] The current sensor 41 and the temperature sensor 43 are electrically connected to
the management device 50 by a signal line, and detection values of the current sensor
41 and the temperature sensor 43 are taken into the management device 50.
[0026] The management device 50 includes a voltage detection unit 60 and a control unit
70. The voltage detection unit 60 is connected to both ends of each lithium ion secondary
battery 100 via a detection line, and functions to measure a voltage of each lithium
ion secondary battery 100 and a total voltage of the assembled battery 30. The voltage
detection unit 60 may measure only a total voltage of the assembled battery 30.
[0027] The control unit 70 includes: a data processing unit 71 including a CPU; a memory
73; and a clocking unit 75 that counts time. The data processing unit 71 monitors
a current I of the assembled battery 30, and a voltage and a temperature of each lithium
ion secondary battery 100 from outputs of the current sensor 41, the voltage detection
unit 60, and the temperature sensor 43, and also estimates SOC of each lithium ion
secondary battery 100. Note that the memory 73 is an example of the "storage unit"
of the present invention.
[0028] The memory 73 stores each piece of information for monitoring a state of each lithium
ion secondary battery 100, and each piece of information for estimating SOC. Note
that the information for estimating SOC includes data of an initial value of SOC and
data of an initial value of an internal resistance R of each lithium ion secondary
battery 100. Further, in addition to this, correlation data indicating a correlation
between SOC and OCV and the like are included.
[0029] As shown in Figs. 2 to 4, the secondary battery 100 includes an electrode assembly
102 including a positive electrode 123 and a negative electrode 124, a case 103 accommodating
the electrode assembly 102, and an external terminal 104 arranged outside the case
103. Further, the secondary battery 100 also has a current collector 105 that electrically
connects the electrode assembly 102 and the external terminal 104.
[0030] The electrode assembly 102 includes a winding core 121, and the positive electrode
123 and the negative electrode 124 wound around the winding core 121 in a state of
being insulated from each other. The winding core need not be provided. As lithium
ions move between the positive electrode 123 and the negative electrode 124 in the
electrode assembly 102, the secondary battery 100 is charged and discharged.
[0031] The positive electrode 123 has a metal foil and a positive active material layer
formed on the metal foil. The metal foil is strip-shaped. The metal foil of the present
embodiment is, for example, an aluminum foil. The negative electrode 124 has a metal
foil and a negative active material layer formed on the metal foil. The metal foil
is strip-shaped. The metal foil of the present embodiment is, for example, a copper
foil.
[0032] In the electrode assembly 102, the positive electrode 123 and the negative electrode
124 configured as described above are wound in a state of being insulated by a separator
125. That is, in the electrode assembly 102 of the present embodiment, the positive
electrode 123, the negative electrode 124, and the separator 125 are wound in a stacked
state. The separator 125 is a member having an insulating property. The separator
125 is disposed between the positive electrode 123 and the negative electrode 124.
As a result, in the electrode assembly 102, the positive electrode 123 and the negative
electrode 124 are insulated from each other. In addition, the separator 125 holds
electrolyte solution in the case 103. As a result, lithium ions move between the positive
electrode 123 and the negative electrode 124 alternately stacked with the separator
125 interposed therebetween, during charge-discharge of the secondary battery 100.
The electrode assembly 102 is not limited to the winding type. The electrode assembly
may be of a stack type in which a plate-shaped positive electrode, a separator, and
a plate-shaped negative electrode are stacked.
[0033] The case 103 has a case main body 131 having an opening, and a cover plate 132 that
blocks (closes) the opening of the case main body 131. This case 103 is formed by
joining an opening peripheral part 136 of the case main body 131 and a peripheral
part of the cover plate 132 in a state of being overlapped. This case 103 has an internal
space defined by the case main body 131 and the cover plate 132. Then, the case 103
accommodates the electrolyte solution in the internal space together with the electrode
assembly 102 and the current collector 105.
[0034] The case main body 131 includes a rectangular plate-shaped closing part 134 and a
rectangular tube-shaped body part 135 connected to a periphery of the closing part
134. That is, the case main body 131 has a rectangular tube shape in which one end
part in an opening direction (Z axis direction) is blocked (that is, a bottomed rectangular
tube shape).
[0035] The cover plate 132 is a plate-shaped member that blocks the opening of the case
main body 131. Specifically, the cover plate 132 has a contour shape corresponding
to the opening peripheral part 136 of the case main body 131. That is, the cover plate
132 is a rectangular-shaped plate material. In this cover plate 132, the peripheral
part of the cover plate 132 is overlapped with the opening peripheral part 136 of
the case main body 131 so as to block the opening of the case main body 131. An outer
case accommodating the electrode assembly and the current collector is not limited
to the case 103, and may be a pouch (laminate outer case) including a metal layer
and a resin layer, for example.
[0036] The external terminal 104 is a part to be electrically connected to an external terminal
of another secondary battery, an external device, or the like. The external terminal
104 is formed of a member having conductivity. For example, the external terminal
104 is formed of a metal material having high weldability, such as an aluminum-based
metal material such as aluminum or an aluminum alloy, or a copper-based metal material
such as copper or a copper alloy.
[0037] The current collector 105 is disposed in the case 103, and directly or indirectly
connected to the electrode assembly 102 so as to be energizable. This current collector
105 is formed of a member having conductivity, and is arranged along an inner surface
of the case 103. The current collector 105 need not be provided. The electrode assembly
102 may be directly connected to the external terminal 104.
[0038] The lithium ion secondary battery 100 includes an insulating member 106 that insulates
the electrode assembly 102 from the case 103. The insulating member 106 of the present
embodiment has a bag shape. This insulating member 106 is disposed between the case
103 (specifically, the case main body 131) and the electrode assembly 102. The insulating
member 106 of the present embodiment is formed of, for example, a resin such as polypropylene
or polyphenylene sulfide. In the lithium ion secondary battery 100 of the present
embodiment, the electrode assembly 102 (the electrode assembly 102 and the current
collector 105) in a state of being accommodated in the bag-shaped insulating member
106 is accommodated in the case 103. The insulating bag 106 need not be provided.
2. Estimation process of SOC
[0039] The data processing unit 71 of the management device 50 performs processing for estimating
a state of charge (SOC) of each lithium ion secondary battery 100. In estimation of
SOC, estimation can be made by adding a cumulative integrated value of the current
I detected by the current sensor 41 to an initial value of SOC, as shown in the following
Formula (1) (current integration method).

[0040] Note that SOCo is an initial value of SOC, I is a current, and C is an available
capacity of the lithium ion secondary battery.
[0041] In the current integration method, a measurement error of the current sensor 41 is
accumulated. Therefore, the data processing unit 71 periodically estimates SOC of
each lithium ion secondary battery 100 by using an OCV method, and resets the SOC
value. Then, after the reset, SOC is estimated by the current integration method with
SOC obtained by the OCV method as the initial value. Note that the OCV method is a
method of estimating SOC on the basis of an open circuit voltage (OCV) of the lithium
ion secondary battery 100, and uses a measured value of OCV and refers to correlation
data indicating a correlation between SOC and OCV, to obtain SOC corresponding to
OCV.
3. Deterioration mode of lithium ion secondary battery 100
[0042] Fig. 5(A) is a T-C correlation graph of the lithium ion secondary battery 100, in
which a horizontal axis is a standing period T and a vertical axis is an available
capacity C [Ah]. Fig. 5(B) is a √T-C correlation graph of the lithium ion secondary
battery 100, in which a horizontal axis is a root (square root) of a standing period
T and a vertical axis is an available capacity C [Ah]. The available capacity C is
a capacity that can be taken out from a state where the lithium ion secondary battery
100 is fully charged. The standing period T is the number of days elapsed with the
lithium ion secondary battery 100 in an unused state (non-energized state). Note that
the lithium ion secondary battery 100 is a ternary lithium ion secondary battery using
a lithium-containing metal oxide containing elements of Co, Mn, and Ni as a positive
active material, and hard carbon as the negative electrode.
[0043] As shown in Fig. 5(A), in a change curve Lc of the available capacity C, transition
is different in a first period W1 from the beginning of the production and a second
period W2 thereafter, so that there are two deterioration modes. Specifically, a curve
of a change curve Lc2 of the second period W2 is sharper than a change curve Lc1 of
the first period W1, and a drop amount of the available capacity C with respect to
the standing period T is larger in the second period W2 than that of the first period
W1. Further, when the horizontal axis is taken as the route of the standing period
T, the first change curve Lc1 and the second change curve Lc2 can be substantially
approximated by straight lines, and an inclination of a second approximate straight
line Ls2 approximating the second change curve Lc2 is larger than that of a first
approximate straight line Ls1 approximating the first change curve Lc1, as shown in
Fig. 5(B). Hereinafter, a deterioration mode according to the change curve Lc1 is
defined as a first deterioration mode, and a deterioration mode according to the change
curve Lc2 is defined as a second deterioration mode.
4. Estimation factor of deterioration mode
[0044] Fig. 6 is a graph in which a horizontal axis is a discharge time [h] and a vertical
axis is CCV [V], and the graph is obtained by conducting a discharge test in which
the ternary lithium ion secondary battery 100 is subjected to constant current discharge
at a low rate. Note that a closed circuit voltage (CCV) is a closed circuit voltage
of the lithium ion secondary battery 100.
[0045] The discharge test is conducted for each of an initial stage, the first deterioration
mode, and the second deterioration mode, and "A0" indicates a discharge curve of the
initial product. "A1" indicates a discharge curve in the first deterioration mode,
and "A2" indicates a discharge curve in the second deterioration mode. Note that A2a
is also a discharge curve in the second deterioration mode, but a capacity retention
ratio Y of the battery is different from that in a case of A2 (described later).
[0046] As shown in Fig. 6, the discharge curve A1 of the first deterioration mode and the
discharge curve A0 of the initial product have substantially the same shape, and the
discharge curve A1 has a shape in which the discharge curve A0 is contracted in the
horizontal axis direction. Whereas, the discharge curve A2 in the second deterioration
mode has a different shape from the discharge curves A0 and A1, and shows a tendency
of a larger change in CCV at the end of discharge.
[0047] Fig. 7 is a graph in which a horizontal axis is a discharge period [h], and a vertical
axis is CCV [V], CCP [V] of the positive electrode, and CCP [V] of the negative electrode,
and the graph is obtained by conducting a discharge test in which the ternary lithium
ion secondary battery 100 of the initial product is subjected to constant current
discharge at a rate of 1C. A curve A0 shown in Fig. 7 indicates a curve of CCV, a
curve Ap0 indicates a curve of CCP of the positive electrode, and a curve An0 indicates
a curve of CCP of the negative electrode. Note that CCV is a difference of a closed
circuit potential (CCP) of the positive electrode and the negative electrode.
[0048] Fig. 8 shows a result of performing a similar discharge test for the first deterioration
mode and the second deterioration mode. A curve A0, a curve Ap0, and a curve An0 shown
in Fig. 8 respectively indicate a curve of CCV, a curve of CCP of the positive electrode,
and a curve of CCP of the negative electrode, for the lithium ion secondary battery
100 in the initial stage. Fig. 8 shows a CCP transition of the positive electrode
and the negative electrode, and an available capacity is determined by balance of
the individual CCP transitions.
[0049] A curve A1, a curve Ap1, and a curve An1 respectively indicate a curve of CCV, a
curve of CCP of the positive electrode, and a curve of CCP of the negative electrode,
for the lithium ion secondary battery 100 in the first deterioration mode. A curve
A2, a curve Ap2, and a curve An2 respectively indicate a curve of CCV, a curve of
CCP of the positive electrode, and a curve of CCP of the negative electrode, for the
lithium ion secondary battery 100 in the second deterioration mode.
[0050] As shown in Figs. 7 and 8, in the lithium ion secondary battery 100 of the initial
product, CCP of the negative electrode sharply changes greatly at the end of discharge
X0 (curve An0). Further, similarly in the lithium ion secondary battery 100 in the
first deterioration mode, CCP of the negative electrode sharply changes greatly at
the end of discharge X1 (curve An1). Therefore, it is conceivable that the available
capacity of the discharge curves A0 and A1 in the initial stage and first deterioration
mode is rate-determined by resistance of the negative electrode.
[0051] Whereas, in the lithium ion secondary battery 100 in the second deterioration mode,
CCP of the positive electrode sharply drops at the end of discharge X2 (curve Ap2).
Therefore, it is conceivable that the available capacity of the discharge curve A2
in the second deterioration mode is rate-determined by resistance of the positive
electrode. Note that rate-determination means what is dominant in determination of
the characteristics.
5. Deterioration mode, and DOD-CCV characteristic and SOC-OCV characteristic
[0052] Fig. 9 is a DOD-CCV correlation graph in which a horizontal axis is DOD [%] and a
vertical axis is CCV [V]. A depth of discharge (DOD) is a depth of discharge of the
lithium ion secondary battery 100. The graph of Fig. 9 is obtained by conducting a
discharge test in which the lithium ion secondary battery 100 is subjected to constant
current discharge at a low rate similarly to the case of Fig. 6.
[0053] The discharge test is conducted for each of the initial stage, the first deterioration
mode, and the second deterioration mode. "B1" indicates a DOD-CCV correlation curve
in the first deterioration mode, while "B2" indicates a DOD-CCV correlation curve
in the second deterioration mode. Note that the correlation curve in the initial stage
is substantially coincident with the correlation curve B1 of the first deterioration
mode.
[0054] As shown in Fig. 9, the DOD-CCV correlation curve B2 of the second deterioration
mode is different from the DOD-CCV correlation curve B1 of the first deterioration
mode. Specifically, the correlation curve B2 has a shape bulging outwardly from the
correlation curve B1, and a voltage change at the end of discharge is large.
[0055] Transition of DOD-CCV is almost equal to transition of DOD-OCV under such a low-rate
condition that the internal resistance R is very small and the internal resistance
does not significantly change during the test, during discharge from a fully charged
state. Then, transition of SOC-OCV becomes almost the same as transition in which
transition of CCV is horizontally inverted at the DOD 50%. Therefore, as shown in
Fig. 10, when the deterioration mode is different, the curve of the SOC-OCV characteristic
of the lithium ion secondary battery 100 becomes different.
[0056] Specifically describing, "F1" shown in Fig. 10 indicates an SOC-OCV correlation curve
in the first deterioration mode, while "F2" indicates an SOC-OCV correlation curve
in the second deterioration mode.
[0057] The SOC-OCV correlation curve F2 of the second deterioration mode has a shape bulging
outwardly from the correlation curve F1, and an OCV change at the end of discharge
is large. Therefore, in the present embodiment, the correlation data indicating the
correlation of SOC-OCV is stored in the memory 73 for each deterioration mode.
[0058] Specifically, as shown in Fig. 11, a correlation map M1 corresponding to the correlation
curve F1 is stored corresponding to the first deterioration mode, and a correlation
map M2 obtained by mapping a correlation curve F2 is stored corresponding to the second
deterioration mode.
[0059] Then, by detecting the deterioration mode of the lithium ion secondary battery 100
and selecting a correlation map M, the estimation accuracy of SOC is improved. Note
that the correlation map M is data obtained by associating a value of SOC for each
OCV on the basis of the correlation curve F (see Fig. 16).
[0060] "B2a" shown in Fig. 9 indicates a difference in a capacity retention ratio Y with
respect to "B2", and a correlation curve "F2a" shown in Fig. 10 indicates a difference
in the capacity retention ratio Y with respect to the correlation curve "F2". The
SOC-OCV correlation curve F2 of the second deterioration mode becomes a curve having
a different shape due to the difference of the capacity retention ratio Y.
[0061] Therefore, as shown in Fig. 11, in the second deterioration mode, correlation maps
M2a to M2c are stored for each of the capacity retention ratios Ya to Yc, and corresponding
the correlation maps M2a to M2c are selected in accordance with the capacity retention
ratio Y. The capacity retention ratio Y can be calculated from the following Formula
(2).

C: an available capacity of the lithium ion secondary battery 100, Co: an initial
value of an available capacity (numerical value after manufacturing)
[0062] Note that, since the SOC-OCV correlation curve F1 of the first deterioration mode
is almost the same curve regardless of the capacity retention ratio Y, only one type
of the correlation map M1 is stored as shown in Fig. 11, for the first deterioration
mode. Further, since the SOC-OCV correlation curve in the initial stage is substantially
coincident with the SOC-OCV correlation curve F1 of the first deterioration mode,
the correlation map M1 of the first deterioration mode can be used at the initial
stage.
6. Detection method of deterioration mode
[0063] Fig. 12 is a graph showing a change in a resistance increase rate (increase rate
of an internal resistance based on an initial value) K with respect to the standing
period T, and the graph is obtained from a test in which the lithium ion secondary
battery 100 is left in a state close to the fully charged state (SOC 80%), and a resistance
increase rate K after the standing period is measured for each SOC. Further, Fig.
12(A) shows a resistance increase rate K1 when the lithium ion secondary battery 100
is at low SOC (specifically, SOC 20%) at a temperature of 25°C, while Fig. 12(B) shows
a resistance increase rate K2 when the lithium ion secondary battery 100 is at medium
SOC (specifically, SOC 50%) at a temperature of 25°C. Note that, in the graphs in
Figs. 12(A) and 12(B), a horizontal axis is a route of the standing period T, and
a vertical axis is the resistance increase rate K of the internal resistance R. The
resistance increase rate K can be calculated by the following Formula (3).
Ro: an initial value of an internal resistance (numerical value at each SOC after
manufacturing)
R: an internal resistance at each SOC at the end of a standing period
[0064] As shown in Fig. 12, the resistance increase rate K shows a tendency to increase
in the first period W1 corresponding to the first deterioration mode, and also in
the second period W2 corresponding to the second deterioration mode. Here, in the
first period W1 corresponding to the first deterioration mode, the resistance increase
rates K1 and K2 increase in a gentle curve in both the low SOC and the medium SOC,
and change amounts are substantially the same.
[0065] Whereas, in the second period W2 corresponding to the second deterioration mode,
a change amount of the resistance increase rate K is different depending on SOC. That
is, while the resistance increase rate K2 at the medium SOC increases in a gentle
curve as shown in Fig. 12(B), the resistance increase rate K1 at the low SOC sharply
rises as shown in Fig. 12(A), and the change amount of the resistance increase rate
K1 at the low SOC is larger than that in the resistance increase rate K2 at the medium
SOC.
[0066] Therefore, in the present embodiment, the deterioration mode of the lithium ion secondary
battery 100 is determined on the basis of the resistance increase rate K1 at the low
SOC in the standing period T and the resistance increase rate K2 at the medium SOC
in the standing period T.
[0067] Specifically, in comparing the resistance increase rates K1 and K2 at the low SOC
and the medium SOC for a boundary P between the first period W1 and the second period
W2, the resistance increase rate K1 at the low SOC is 131%, the resistance increase
rate K2 at the medium SOC is 121%, and a difference in the resistance increase rates
(K1 - K2) is 10%. Therefore, when a value obtained by subtracting the resistance increase
rate K2 at the medium SOC from the resistance increase rate K1 at the low SOC in the
standing period T is a determination value 10% or less (in a case of the following
Formula (4)), the deterioration mode is determined to be the first deterioration mode.
Whereas, when a value obtained by subtracting the resistance increase rate K2 at the
medium SOC from the resistance increase rate K1 at the low SOC in the standing period
T is larger than the determination value 10% (in a case of the following Formula (5)),
the deterioration mode is determined to be the second deterioration mode.
[0068] Resistance increase rate K1 at low SOC in standing period T1 - Resistance increase
rate K2 at medium SOC in standing period T ≤ 10% (4) ≤
[0069] Resistance increase rate K1 at low SOC in standing period T1 - Resistance increase
rate K2 at medium SOC in standing period T > 10% (5)
[0070] For example, in a case of a standing period Ta, a resistance increase rate is K1a
at the low SOC and a resistance increase rate is K2a at the medium SOC. Since K1a
- K2a is 10% or less, the deterioration mode is determined to be the first deterioration
mode.
[0071] Whereas, in a case of a standing period Tb, a resistance increase rate is K1b at
the low SOC and a resistance increase rate is K2b at the medium SOC. Then, since K1a
- K1b is larger than 10%, the deterioration mode is determined to be the second deterioration
mode.
[0072] Note that "low SOC" means that SOC is in a range of 20% or less, and "medium SOC"
means that SOC is in a range of 40% to 60%. In addition, although it is preferable
to compare the two resistance increase rates K1 and K2 at a same temperature and a
same standing period T, the temperatures and the standing periods T may not necessarily
coincide with each other as long as an error is small.
[0073] Note that the SOC 20% is an example of a "first threshold" of the present invention,
and the SOC 40% is an example of a "second threshold" of the present invention.
[0074] The lithium ion secondary battery 100 has a configuration in which a plurality of
cells (four cells in the present embodiment) are in series connection. In the present
embodiment, the first deterioration mode is determined in a case where all of the
four cells satisfy the condition of (4), and the second deterioration mode determined
when any one of the four cells satisfies the condition of (5).
[0075] Further, the determination value varies depending on a battery type and a condition
such as a temperature. Therefore, it is preferable to preliminarily evaluate the resistance
increase rate K1 and K2 of the internal resistance at low SOC and medium SOC at the
boundary P of the deterioration mode, in accordance with a battery type and a condition,
to determine the numerical value.
7. Switching process of correlation map M
[0076] Fig. 14 is a flowchart of a switching process of a correlation map.
[0077] After starting, the data processing unit 71 of the management device 50 detects a
temperature of the assembled battery 30 by the temperature sensor 43. Further, the
current I flowing through the assembled battery 30 is detected by the current sensor
41, and the voltage V of each lithium ion secondary battery 100 is detected by the
voltage detection unit 60. Further, a total voltage of the assembled battery 30 is
detected (S10).
[0078] Thereafter, the data processing unit 71 performs processing for estimating each of
the following data, on the basis of data of the measured current I and voltage V (S20).
- (a) SOC of each cell
- (b) An internal resistance R of each cell
- (c) A resistance increase rate K of the internal resistance R of each cell
[0079] SOC of (a) can be estimated by the current integration method described above. The
internal resistance of (b) can be calculated, for example, by the following Formula
(6) (see Fig. 13). The resistance increase rate K can be calculated by substituting
a value of the calculated internal resistance R into Formula (3) above.

[0080] CCV is a closed circuit voltage of each cell, and OCV is an open circuit voltage
of each cell.
[0081] Then, after calculating each of the data of (a) to (c), the data processing unit
71 performs processing of storing the data of (a) to (c) in the memory 73 in association
with the data of the temperature (S30).
[0082] Thereafter, the process flow shifts to S40, and it is determined whether data for
determining the deterioration mode is stocked. Specifically, it is determined as being
stocked when the data of the internal resistance R of (b) and the data of the resistance
increase rate K of (c) are stored for each temperature and each SOC, and determined
as not being stocked when not stored.
[0083] When the data is not stocked, the processing from S10 to S30 is repeated. As a result,
for each cell, the data of the internal resistance R of (b) and the data of the resistance
increase rate K of (c) are accumulated for each temperature and each SOC. Then, when
the data for determining the deterioration mode is stocked, the process shifts to
S50.
[0084] Note that the data processing unit 71 calculates the capacity retention ratio Y in
the following method during a period in which the processing of S10 to S30 is repeated.
[0085] First, the current I detected by the current sensor 41 is integrated at a certain
time interval from a certain time t1 to a certain time t2, and at that time, a varied
electric quantity Q [Ah] of each cell is obtained. Further, an SOC variation amount
D [%] from t1 to t2 is obtained by the OCV method or the like. Then, the available
capacity C of each cell is calculated from the electric quantity Q and the SOC variation
amount D of each cell.

[0086] Then, by substituting the calculated available capacity C into the Formula (2), the
capacity retention ratio Y of each cell can be obtained. Note that the data of the
capacity retention ratio Y is stored in the memory 73 by the data processing unit
71.
[0087] Upon shifting to S50, the data processing unit 71 determines the deterioration mode.
While the determination method of the deterioration mode is as already explained,
the data processing unit 71 makes determination on the basis of the resistance increase
rate K1 at the low SOC in the standing period T and the resistance increase rate K2
at the medium SOC in the standing period T.
[0088] Specifically, when all the four cells satisfy the condition (4), the data processing
unit 71 determines to be the "first deterioration mode" (S50: YES). Note that the
processing of S50 corresponds to the "mode determination process, determination step"
of the present invention.
[0089] Then, when the deterioration mode of each cell is determined to be the "first deterioration
mode", the data processing unit 71 accesses the memory 73 and selects the correlation
map M1 corresponding to the first deterioration mode (S60).
[0090] Therefore, during the first deterioration mode, SOC is estimated by the OCV method
using the first correlation map M1. That is, in a state where a current does not flow
in each cell, the data processing unit 71 measures OCV of each lithium ion secondary
battery 100 by the voltage detection unit 60 (Fig. 15: S100). Then, referring the
measured OCV to the correlation map M1, SOC of each cell is calculated (Fig. 15: S110).
Note that the processing of S110 corresponds to the "estimation process, estimation
step" of the present invention.
[0091] Further, the data processing unit 71 repeatedly executes the switching process (S10
to S80) of the correlation map M for each predetermined period. Then, when any one
of the four cells satisfies the condition of (5), the data processing unit 71 determines
to be the "second deterioration mode" (S50: NO).
[0092] Then, when the deterioration mode of each cell is determined to be the "second deterioration
mode", the data processing unit 71 accesses the memory 73 and performs processing
of reading the data of the capacity retention ratio Y (S70). Specifically, among the
capacity retention ratios Y of the four cells, data of a cell having the largest difference
in the resistance increase rates K1 - K2 is read out. Thereafter, the data processing
unit 71 accesses the memory 73 and selects the correlation map M corresponding to
the capacity retention ratio Y from the correlation maps M2a to M2c of the second
deterioration mode (S80). For example, when the capacity retention ratio is Ya, the
correlation map M2a is selected (S80).
[0093] Therefore, during the second deterioration mode, SOC is estimated by the OCV method
using the second correlation map M2a corresponding to the capacity retention ratio
Ya. That is, in a state where a current does not flow in each cell, OCV of each lithium
ion secondary battery 100 is measured by the voltage detection unit 60 (Fig. 15: S100).
Then, by using the measured OCV and referring to the correlation map M2a, SOC of each
cell is calculated (Fig. 15: S110).
[0094] In addition, when the capacity retention ratio Y changes from "Ya" to "Yb" during
the second deterioration mode, the data of the correlation map M2b is read from the
memory 73 by the data processing unit 71 when the processing of S80 is executed, and
thereafter, SOC is estimated by the OCV method using the second correlation map M2b
corresponding to the capacity retention ratio Yb.
8. Description of effect
[0095] In the battery pack 20 disclosed in this embodiment, the correlation map M indicating
the correlation between SOC and OCV is switched in accordance with the deterioration
mode of each cell. Therefore, it is possible to estimate SOC of each cell with high
accuracy.
[0096] In particular, the battery pack 20 or the assembled battery 30 using the lithium
ion secondary battery 100 as the energy storage device has become widespread in automobile
use, and in the future, a situation is assumed in which the assembled battery 30 after
being used in automobile use (first use) is removed from the automobile and used for
another purpose (second use).
[0097] In the second use, since the elapsed time after manufacturing is longer, the deterioration
mode is assumed to shift from the first deterioration mode to the second deterioration
mode. In the battery pack 20 disclosed in the present embodiment, since the correlation
map M indicating the correlation between SOC and OCV is switched in accordance with
the deterioration mode, it is possible to estimate SOC of each cell with high accuracy
even in another purpose (second use). Even in a case of being used for the same purpose
of use, it is possible to accurately estimate SOC of each cell regardless of a use
period or a use situation.
[0098] Further, in the battery pack 20 disclosed in this embodiment, when it is determined
to be the second deterioration mode, the correlation maps M2a to M2c corresponding
to the capacity retention ratios Ya to Yc are selected. Therefore, it is possible
to further improve the SOC estimation accuracy of each cell in the second deterioration
mode.
[0099] Further, as shown in Figs. 12(A) and 12(B), in the second deterioration mode, the
resistance increase rate K1 at the low SOC rises sharply, and the resistance increase
rate K1 at the low SOC has a characteristic in which the change amount is larger than
that in the resistance increase rate K2 at the medium SOC. Focusing on the point above,
the battery pack 20 disclosed in the present embodiment determines the deterioration
mode on the basis of the resistance increase rate K1 at the low SOC and the resistance
increase rate K2 at the medium SOC. Therefore, it is possible to determine the deterioration
mode with high accuracy.
<Second Embodiment>
[0100] A second embodiment of the present invention will be described with reference to
Figs. 17 and 18.
[0101] In the first embodiment, as an example of the lithium ion secondary battery 100,
the ternary lithium ion secondary battery using a lithium-containing metal oxide containing
elements of Co, Mn, and Ni as the positive active material and using hard carbon as
the negative electrode has been exemplified.
[0102] In the second embodiment, a ternary lithium ion secondary battery 100A is exemplified
in which a negative electrode material is different from the lithium ion secondary
battery 100 of the first embodiment, and a lithium-containing metal oxide containing
elements of Co, Mn, and Ni is used as a positive active material and graphite is used
as a negative electrode.
[0103] Fig. 17 is a graph in which a horizontal axis is a discharge period [h], a vertical
axis is CCV [V], CCP [V] of a positive electrode, and CCP [V] of a negative electrode,
and the graph is obtained by conducting a constant current discharge test at a rate
of 1C on each lithium ion secondary battery 100A in an initial stage, a first deterioration
mode, and a second deterioration mode.
[0104] Note that Fig. 17 corresponds to Fig. 8 of the first embodiment, and a curve A0,
a curve Ap0, and a curve An0 respectively indicate a curve of CCV, a curve of CCP
of the positive electrode, and a curve of CCP of the negative electrode, for the lithium
ion secondary battery 100A in the initial stage.
[0105] Further, a curve A1, a curve Ap1, and a curve An1 respectively indicate a curve
of CCV, a curve of CCP of the positive electrode, and a curve of CCP of the negative
electrode, for the lithium ion secondary battery 100A in the first deterioration mode.
A curve A2, a curve Ap2, and a curve An2 respectively indicate a curve of CCV, a curve
of CCP of the positive electrode, and a curve of CCP of the negative electrode, for
the lithium ion secondary battery 100A in the second deterioration mode.
[0106] Also in the ternary lithium ion secondary battery 100A using graphite as the negative
electrode, similarly to the case where the negative electrode is hard carbon, CCP
of the negative electrode sharply changes greatly at the end of discharge X1 (curve
An1) in the first deterioration mode. Whereas, in the second deterioration mode, CCP
of the positive electrode sharply drops at the end of discharge X2 (curve Ap2). Therefore,
there are the first deterioration mode in which an available capacity is rate-determined
by a resistance of the negative electrode, and the second deterioration mode in which
an available capacity is rate-determined by a resistance of the positive electrode.
[0107] Fig. 18 is a DOD-CCV correlation graph in which a horizontal axis is DOD [%] and
a vertical axis is CCV [V]. Note that the graph of Fig. 18 is obtained by conducting
a discharge test in which the ternary lithium ion secondary battery 100A using graphite
as the negative electrode is subjected to constant current discharge at a low rate.
[0108] The discharge test is conducted for the secondary battery 100 in each of the initial
stage, the first deterioration mode, and the second deterioration mode, and "B0" indicates
a DOD-CCV correlation curve of the initial product. "B1" indicates a DOD-CCV correlation
curve in the first deterioration mode, and "B2" indicates a DOD-CCV correlation curve
in the second deterioration mode.
[0109] As shown in Fig. 18, the DOD-CCV correlation curve B2 of the second deterioration
mode is different from the DOD-CCV correlation curve B1 of the first deterioration
mode. As described in the first embodiment, transition of DOD-CCV is almost equal
to transition of DOD-OCV under such a low-rate condition that an internal resistance
R is very small and the internal resistance does not significantly change during the
test, during discharge from a fully charged state. Therefore, when the deterioration
mode is different, the curve of the SOC-OCV characteristic of the lithium ion secondary
battery 100 becomes different.
[0110] Therefore, similarly to the first embodiment, the ternary lithium ion secondary battery
100A using graphite as the negative electrode can also improve estimation accuracy
of SOC, by switching the correlation map M indicating the correlation of SOC-OCV in
accordance with the deterioration mode.
<Other Embodiments>
[0111] The present invention is not limited to the embodiments described by the above description
and drawings, and the following embodiments, for example, are also included in the
technical scope of the present invention.
- (1) In the first and second embodiments described above, the ternary lithium ion secondary
battery has been exemplified as the "energy storage device". The present invention
is widely applicable as long as it is a lithium ion secondary battery having a characteristic
including the first deterioration mode in which an available capacity is rate-determined
by a resistance of the negative electrode and the second deterioration mode in which
an available capacity is rate-determined by a resistance of the positive electrode.
For example, it is applicable to an iron phosphate lithium ion secondary battery using
lithium iron phosphate (LiFePO4) as the positive active material and carbon or graphite as the negative active material.
Further, for example, as the positive active material of the lithium ion secondary
battery, it is preferable to use a lithium transition metal oxide and the like, such
as LiNi1/3Co1/3Mn1/3, having a layered structure such as Li1+xM1-yO2 (M is one or two types or more of transition metal elements selected from Fe, Ni,
Mn, Co, and the like, and 0 ≤ x < 1/3, 0 ≤ y < 1/3). Further, a two phase reaction
active material may be used. Specifically, the positive active material is a material
represented by the general formula LiMPO4, and M may be any one of Fe, Mn, Cr, Co, Ni, V, Mo, and Mg. Further, examples of
the negative active material include, in addition to lithium alloys (lithium-silicon,
lithium-aluminum, lithium-lead, lithium-tin, lithium-aluminum-tin, lithium-gallium,
and lithium metal-containing alloys with wood alloy), an alloy capable of occlusion
and release of lithium, a carbon material (e.g., graphite, hardly graphitizable carbon,
easily graphitizable carbon, low-temperature fired carbon, amorphous carbon, and the
like), silicon oxide, metal oxide, lithium metal oxide (Li4Ti6O12 and the like), polyphosphoric acid compound, and the like.
Further, as long as the energy storage device has a characteristic including the first
deterioration mode in which an available capacity is rate-determined by a resistance
of the negative electrode, and the second deterioration mode in which an available
capacity is rate-determined by a resistance of the positive electrode, it is applicable
to a secondary battery other than a lithium ion secondary battery, a capacitor, and
the like.
- (2) In the first and second embodiments described above, the example has been shown
in which the correlation maps M2a to M2b corresponding to the capacity retention ratios
Ya to Yb are selected when the second deterioration mode is determined, but the selection
of the correlation map M in accordance with the capacity retention ratio Y is an optional
processing, and the configuration is sufficient in which the correlation maps M1 and
M2 are selected at least in accordance with the deterioration mode.
- (3) In the first and second embodiments described above, the example has been shown
in which the internal resistance R of the lithium ion secondary battery 100 is calculated
on the basis of the Formula (6), but the internal resistance R may be obtained by
another calculation method from a measured value of the current I flowing through
the assembled battery 30 and the voltage V of each lithium ion secondary battery 100.
For example, during charge or discharge, the current I and the voltage V may be measured
for a plurality of times to determine a straight line Lv indicating a change of the
voltage V with respect to the current I, and an inclination of the straight line Lv
(internal resistance R) may be obtained. In the example of Fig. 19, the current I
of the assembled battery 30 and the voltage V of the lithium ion secondary battery
100 are measured, and the straight line Lv indicating a change of the voltage V with
respect to the current I is obtained from the obtained measured values I and V.
- (4) In the first and second embodiments described above, the example has been shown
in which the correlation data of SOC-OCV shown in Fig. 10 is held as the correlation
map M shown in Fig. 16. However, for example, a configuration may be adopted in which
the graph of Fig. 10 is held by an approximate expression. As the approximate expression,
an n-th order function such as a cubic function, which is represented by the following
Formula (8), can be exemplified.

a to d are coefficients.
[0112] Alternatively, as represented by the Formula (9), an approximate expression based
on a theory such as the Nernst equation may be used.

[0113] E0 is a standard electrode battery, and k1 to k4 are coefficients.
(5) In the first and second embodiments described above, the configuration has been
exemplified in which the deterioration mode is determined on the basis of the resistance
increase rate K1 at low SOC and the resistance increase rate K2 at medium SOC. The
resistance increase rates at medium SOC and at high SOC are substantially the same.
Therefore, a configuration may be adopted in which the deterioration mode is determined
on the basis of the resistance increase rate at low SOC and the resistance increase
rate at high SOC in which SOC is higher than that in medium SOC. Further, in addition
to this, as described in Patent Document 2 (JP-A-2014-109477), the deterioration mode may be determined by comparing magnitude of a second current-carrying
capacity with a threshold value. Note that the second current-carrying capacity is
magnitude of a change in a current-carrying capacity with respect to a first capacity
change quantity, in a case where magnitude of a change in a current-carrying capacity
with respect to a voltage when the energy storage device is charged or discharged
is defined as the first capacity change quantity.
(6) In the example of Fig. 1, the management device 50 is disposed inside the case
that accommodates the energy storage device 100 or the assembled battery 30, but the
present invention is not limited to this example. The management device 50 or a part
of the management device 50 (e.g., the control unit 70) may be disposed at a location
distant from the energy storage device 100 (the assembled battery 30). For example,
a control unit provided in a vehicle may function as the SOC estimation device of
the energy storage device. A control unit provided in a battery inspection device
may function as the SOC estimation device of the energy storage device.
[0114] The present invention may be implemented in the following mode.
[0115] (Example 1) In an SOC estimation device of an energy storage device, the SOC estimation
device includes a storage unit and a data processing unit; the energy storage device
has a characteristic including a first deterioration mode in which a capacity drop
with respect to time indicates a first transition, and a second deterioration mode
in which a capacity drop indicates a second transition; the storage unit holds first
correlation data indicating a correlation between SOC and OCV of the energy storage
device in the first deterioration mode, and second correlation data indicating a correlation
between SOC and OCV of the energy storage device in the second deterioration mode;
and the data processing unit executes a mode determination process of determining
a deterioration mode of the energy storage device, and an estimation process of selecting
correlation data corresponding to the deterioration mode from the storage unit, to
estimate SOC of the energy storage device.
[0116] (Example 2) The SOC estimation device according to Example 1, wherein the data processing
unit determines a deterioration mode of the energy storage device based on an internal
resistance of the energy storage device in the mode determination process.
[0117] (Example 3) The SOC estimation device according to Example 2, wherein the data processing
unit determines a deterioration mode of the energy storage device in the mode determination
process, based on a resistance increase rate of an internal resistance of the energy
storage device when SOC is lower than a first threshold, and based on a resistance
increase rate of an internal resistance of the energy storage device when SOC is higher
than a second threshold larger than the first threshold.
[0118] (Example 4) The SOC estimation device according to any one of Examples 1 to 3, wherein
the second deterioration mode is a deterioration mode in which a capacity drop is
larger than that in the first deterioration mode, and a correlation of SOC-OCV is
different in accordance with a capacity retention ratio; the storage unit holds correlation
data indicating a correlation between SOC and OCV of the energy storage device for
each capacity retention ratio of the energy storage device, for the second deterioration
mode; and when the energy storage device is determined to be in the second deterioration
mode, the data processing unit selects correlation data corresponding to a capacity
retention ratio, to estimate SOC of the energy storage device.
[0119] (Example 5) The SOC estimation device according to any one of the Examples 1 to 4,
wherein the data processing unit calculates an internal resistance of the energy storage
device based on a measured value of a voltage and a current of the energy storage
device.
[0120] (Example 6) The SOC estimation device according to any one of Examples 1 to 5, wherein
the storage unit holds the first correlation data and the second correlation data
by a correlation map or an approximate expression indicating a correlation between
SOC and OCV of the energy storage device.
[0121] (Example 7) An energy storage apparatus including an energy storage device and the
SOC estimation device according to any one of Examples 1 to 4.
[0122] (Example 8) An SOC estimation method for an energy storage device, wherein the energy
storage device has a characteristic including a first deterioration mode in which
a capacity drop with respect to time indicates a first transition, and a second deterioration
mode in which a capacity drop indicates a second transition, the SOC estimation method
including a mode determination step of determining a deterioration mode of the energy
storage device, and an estimation step of selecting correlation data corresponding
to the deterioration mode from a plurality of correlation data indicating a correlation
of SOC and OCV of the energy storage device, to estimate SOC of the energy storage
device.
[0123] (Example 9) The SOC estimation device according to Example 1, wherein the data processing
unit predicts in advance that a deterioration mode of the energy storage device shifts
from the first deterioration mode to the second deterioration mode in the mode determination
process, or detects the fact immediately after the deterioration mode shifts to the
second deterioration mode. For example, the technique of
JP-A-2016-80477 may be applied.
[0124] (Example 10) The SOC estimation device according to Example 1, wherein the data processing
unit determines a deterioration mode of the energy storage device based on a CCP transition
of a positive electrode and a negative electrode of the energy storage device in the
mode determination process.
DESCRIPTION OF REFERENCE SIGNS
[0125]
20: ... Battery pack (example of "energy storage apparatus" of the present invention)
30: ... Assembled battery
41: ... Current sensor
43: ... Temperature sensor
50: ... Management unit (example of "SOC estimation device" of the present invention)
60: ... Voltage detection circuit
71: ... Data processing unit
73: ... Memory (example of "storage unit" of the present invention)
100: ... Lithium ion secondary battery (example of "energy storage device" of the
present invention)